Scale-invariant method (SIM) is a state-of-the-art model augmentation method to improve the transferability of adversarial examples. However, we find that SIM is easily affected by the scaling operation with small scaling factors, and cannot stably enhance the transferability of the base attack. In this paper, we propose an enhanced transferable attack based on SIM. To alleviate the instability of SIM caused by the scaled copy which does not satisfy scaleinvariance, we propose to ensemble logit-outputs of scale copies of the input image, rather than ensemble the gradients, to form an ensemble attack that generates transferable adversarial images from multiple models of the original CNN model. Compared with the existing ensemble methods, our method is fast yet effective and can be easily integrated into the gradient-based attacks. The experimental results show that the proposed integrated EL-NI-FGSM attack stably improves the transferability of NI-FGSM, and outperforms SI-NI-FGSM, achieving >8% higher of attack success rate for both white-box and black-box attacks on CIFAR-10.
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